BEGIN:VCALENDAR VERSION:2.0 PRODID:Linklings LLC BEGIN:VTIMEZONE TZID:Australia/Melbourne X-LIC-LOCATION:Australia/Melbourne BEGIN:DAYLIGHT TZOFFSETFROM:+1000 TZOFFSETTO:+1100 TZNAME:AEDT DTSTART:19721003T020000 RRULE:FREQ=YEARLY;BYMONTH=4;BYDAY=1SU END:DAYLIGHT BEGIN:STANDARD DTSTART:19721003T020000 TZOFFSETFROM:+1100 TZOFFSETTO:+1000 TZNAME:AEST RRULE:FREQ=YEARLY;BYMONTH=10;BYDAY=1SU END:STANDARD END:VTIMEZONE BEGIN:VEVENT DTSTAMP:20260114T163659Z LOCATION:Meeting Room C4.8\, Level 4 (Convention Centre) DTSTART;TZID=Australia/Melbourne:20231215T131500 DTEND;TZID=Australia/Melbourne:20231215T141000 UID:siggraphasia_SIGGRAPH Asia 2023_sess157@linklings.com SUMMARY:Put Things Together DESCRIPTION:Neural Packing: from Visual Sensing to Reinforcement Learning\ n\nWe present a novel learning framework to solve the transport-and-packin g (TAP) problem in 3D. It constitutes a full solution pipeline from partia l observations of input objects via RGBD sensing and recognition to final box placement, via robotic motion planning, to arrive at a compact packing in a t...\n\n\nJuzhan Xu (Shenzhen University), Minglun Gong (University of Guelph), Hao Zhang (Simon Fraser University), and Hui Huang and Ruizhen Hu (Shenzhen University)\n---------------------\nReconstruction of Machin e-Made Shapes from Bitmap Sketches\n\nWe propose a method of reconstructin g 3D machine-made shapes from bitmap sketches by separating an input image into individual patches and jointly optimizing their geometry. \nWe rely on two main observations:\n(1) human observers interpret sketches of man-m ade shapes as a collection of simple geometr...\n\n\nIvan Puhachov (Univer site de Montreal; Huawei Technologies, Canada); Cedric Martens (Universite de Montreal); Paul G. Kry (McGill University; Huawei Technologies, Canada ); and Mikhail Bessmeltsev (Universite de Montreal)\n--------------------- \nLearning based 2D Irregular Shape Packing\n\n2D irregular shape packing is a necessary step to arrange UV patches of a 3D model within a texture a tlas for memory-efficient appearance rendering in computer graphics. Being a joint, combinatorial decision-making problem involving all patch positi ons and orientations, this problem has well-known N...\n\n\nZeshi Yang and Zherong Pan (Tencent America), Manyi Li (Shandong University), and Kui Wu and Xifeng Gao (Tencent America)\n---------------------\nLearning Gradien t Fields for Scalable and Generalizable Irregular Packing\n\nThe packing p roblem, also known as cutting or nesting, has diverse applications in logi stics, manufacturing, layout design, and atlas generation. It involves arr anging irregularly shaped pieces to minimize waste while avoiding overlap. Recent advances in machine learning, particularly reinforcement ...\n\n\n Tianyang Xue (Shandong University), Mingdong Wu (Peking University), Lin L u and Haoxuan Wang (Shandong University), and Hao Dong and Baoquan Chen (P eking University)\n\nRegistration Category: Full Access\n\nSession Chair: Chi Wing Fu (The Chinese University of Hong Kong) END:VEVENT END:VCALENDAR